SuperResolution Techniques in Multistatic Sensor Array Processing: A Signal Subspace Approach,Used

SuperResolution Techniques in Multistatic Sensor Array Processing: A Signal Subspace Approach,Used

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MUSIC (Multiple Signal Classification) method, which is a superresolution technique, fails in the scenario of multiple targets if the targets are deterministic because the rank of the covariance matrix collapses to the value of one regardless of the number of targets. FRM (Frequency Response Matrix) method, which is also a superresolution technique, addresses that shortcoming aspect of MUSIC. The main difference between the two schemes is that in the FRM method the transmitting elements are switched from one to another while the data matrix is collected, i.e., each column of the acquired data matrix is due to a different transmitter. In the other hand, the conventional MUSIC scheme employs only one transmitter. This difference results in the FRM data matrix containing a richer set of information.

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